基于深度多路径学习的脑积水婴儿脑室MRI自动分割

Hikari Jinbo, Y. Iwamoto, M. Nonaka, Yen-Wei Chen
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引用次数: 1

摘要

婴儿脑室合并脑积水是一种发生于儿童的脑积水疾病,脑室内脑脊液积聚,脑室异常扩张。脑室有可能通过压迫其他脑组织而造成脑损伤。切除脑室负担轻,对早期发现和术后随访至关重要。然而,脑积水婴儿脑室的自动分割是一项具有挑战性的任务;尤其是脑积水患者,因为脑积水的形状复杂多样。此外,由于准备大量带注释的数据具有挑战性,因此有必要使用少量数据进行训练。因此,用传统的深度学习实现准确的分割是具有挑战性的。在这项研究中,我们提出了一种深度多路径学习方法来精确分割脑积水婴儿脑室。在该方法中,我们针对轴面、矢状面和冠状面建立了三种深度学习模型,然后对模型的结果进行综合,得到最终的分割结果。我们提出的方法以最少的数据量获得了大量的特征。与相关方法相比,该方法的分割精度从74.3%提高到81.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Segmentation of Infant Brain Ventricles with Hydrocephalus in MRI Based on Deep Multi-path Learning
Infant Brain Ventricles with Hydrocephalus is a disease of hydrocephalus that occurs in children, in which cerebrospinal fluid accumulates in the ventricles and the ventricles expand abnormally. The ventricles have the potential to cause brain damage by compressing other brain tissues. It is crucial to extract the ventricles with less burden for early detection and postoperative follow-up. However, automatic segmentation of infant brain ventricles with hydrocephalus is a challenging task; especially for those with hydrocephalus because they have complicated and diverse shapes. Further, because preparing a large amount of annotated data is challenging, it is necessary to train with a small amount of data. Thus, achieving an accurate segmentation with conventional deep learning is challenging. We proposed a deep multi-path learning approach for the accurate segmentation of infant brain ventricles with hydrocephalus in this study. In the proposed method, we developed three deep learning models for axial, sagittal, and coronal planes, then integrated the results of the models to obtain the final segmentation result. With a minimal amount of data, our proposed method acquired massive features. The segmentation accuracy of our proposed method increased from 74.3% to 81.1%, when compared with the related method.
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